Bayesian Linear Seismic Inversion Integrating Uncertainty of Noise Level Estimation and Wavelet Extraction

@article{Yang2022BayesianLS,
  title={Bayesian Linear Seismic Inversion Integrating Uncertainty of Noise Level Estimation and Wavelet Extraction},
  author={Xiuwei Yang and Ning-bo Mao and Peimin Zhu},
  journal={Minerals},
  year={2022},
  url={https://api.semanticscholar.org/CorpusID:255090715}
}
Seismic impedance inversion is an important method to identify the spatial characteristics of underground rock physical properties. Seismic inversion results and uncertainty evaluation are the important scientific basis for risk decision-making in oil and gas development. Under the assumption that the impedance and the error of the observed seismic data meet the Gaussian distribution or log–Gaussian distribution, the Bayesian linear seismic inversion can analytically obtain the posterior… 

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